2
citations
#1998
in CVPR 2025
of 2873 papers
3
Top Authors
4
Data Points
Abstract
Neural fields encode continuous multidimensional signals as neural networks, enabling diverse applications in computer vision, robotics, and geometry. While Adam is effective for stochastic optimization, it often requires long training times. To address this, we explore alternative optimization techniques to accelerate training without sacrificing accuracy. Traditional second-order methods like L-BFGS are unsuitable for stochastic settings. We propose a theoretical framework for training neural fields with curvature-aware diagonal preconditioners, demonstrating their effectiveness across tasks such as image reconstruction, shape modeling, and Neural Radiance Fields (NeRF).
Citation History
Jan 25, 2026
2
Feb 13, 2026
2
Feb 13, 2026
2
Feb 13, 2026
2